“Seeing” Beneath the Clouds — Machine-Learning-Based Reconstruction of North African Dust Plumes.

Kanngießer, Franz and Fiedler, Stephanie (2024) “Seeing” Beneath the Clouds — Machine-Learning-Based Reconstruction of North African Dust Plumes. Open Access AGU Advances, 5 (1). Art.Nr. e2023AV001042. DOI 10.1029/2023AV001042.

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Abstract

Mineral dust is one of the most abundant atmospheric aerosol species and has various far-reaching effects on the climate system and adverse impacts on air quality. Satellite observations can provide spatio-temporal information on dust emission and transport pathways. However, satellite observations of dust plumes are frequently obscured by clouds. We use a method based on established, machine-learning-based image in-painting techniques to restore the spatial extent of dust plumes for the first time. We train an artificial neural net (ANN) on modern reanalysis data paired with satellite-derived cloud masks. The trained ANN is applied to cloud-masked, gray-scaled images, which were derived from false color images indicating elevated dust plumes in bright magenta. The images were obtained from the Spinning Enhanced Visible and Infrared Imager instrument onboard the Meteosat Second Generation satellite. We find up to 15% of summertime observations in West Africa and 10% of summertime observations in Nubia by satellite images miss dust plumes due to cloud cover. We use the new dust-plume data to demonstrate a novel approach for validating spatial patterns of the operational forecasts provided by the World Meteorological Organization Dust Regional Center in Barcelona. The comparison elucidates often similar dust plume patterns in the forecasts and the satellite-based reconstruction, but once trained, the reconstruction is computationally inexpensive. Our proposed reconstruction provides a new opportunity for validating dust aerosol transport in numerical weather models and Earth system models. It can be adapted to other aerosol species and trace gases.

Key Points:
- We present the first fast reconstruction of cloud-obscured Saharan dust plumes through novel machine learning applied to satellite images
- The reconstruction algorithm utilizes partial convolutions to restore cloud-induced gaps in gray-scaled Meteosat Second Generation-Spinning Enhanced Visible and Infrared Imager Dust RGB images
- World Meteorological Organization dust forecasts for North Africa mostly agree with the satellite-based reconstruction of the dust plume extent

Document Type: Article
Keywords: atmospheric sciences; environmental sciences cloud removal; machine learning; mineral dustmsg seviri; north africa; satellite remote sensing
Research affiliation: OceanRep > GEOMAR > FB1 Ocean Circulation and Climate Dynamics > FB1-ME Maritime Meteorology > FB1-ME Maritime Meteorology Atmospheric Physics
OceanRep > GEOMAR > FB1 Ocean Circulation and Climate Dynamics > FB1-ME Maritime Meteorology
Main POF Topic: PT2: Ocean and Cryosphere
Refereed: Yes
Open Access Journal?: Yes
Publisher: AGU (American Geophysical Union), Wiley
Related URLs:
Date Deposited: 28 Nov 2023 14:33
Last Modified: 30 Aug 2024 12:56
URI: https://oceanrep.geomar.de/id/eprint/59495

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